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Abstract

This paper studies a version of the job shop scheduling problem in which some operations have to be scheduled within non-relaxable time windows (i.e. earliest/latest possible start time windows). This problem is a well-known NP-complete Constraint Satisfaction Problem (CSP). A popular method for solving these types of problems consists in using depth-first backtrack search. Our earlier work focused on developing efficient consistency enforcing techniques and efficient variable/value ordering heuristics to improve the efficiency of this procedure. In this paper, we combine these techniques with new look-back schemes that help the search procedure recover from so-called deadend search states (i.e. partial solutions that cannot be completed without violating some constraints). More specifically, we successively describe three intelligent backtracking schemes: Dynamic Consistency Enforcement dynamically enforces higher levels of consistency in selected critical subproblems, Learning From Failure dynamically modifies the order in which variables are instantiated based on earlier conflicts, and Heuristic Backjumping gives up searching areas of the search space that appear too difficult. These schemes are shown to (1) further reduce the average complexity of the search procedure, (2) enable our system to efficiently solve problems that could not be solved otherwise due to excessive computational cost, and (3) be more effective at solving job shop scheduling problems than other look-back schemes advocated in the literature.